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Data Modelling with Gaussian Process in Sensor Networks for Urban Environmental Monitoring

机译:与城市环境监测传感器网络高斯过程的数据建模

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In this paper, the multidimensional output Gaussian process (GP) is applied to model urban environmental data collected by sensor networks. Measurements from sensors at different locations are correlated. Moreover, we observe that the pollution level in urban area is highly coupled with human activities and shows periodic patterns accordingly. Based on these observations, we discuss the design of mean and kernel functions with two approaches: (1) composed kernel and maximum likelihood estimation of hyper-parameters, (2) Wiener-Khinchin theorem based approximation of sample covariances. To validate the models, the accuracy of interpolations given by different approaches are compared. The experimental results show that, for the application of interpolation, the dependent GP with the approximated sample covariances as kernels can provide better performance than the independent GP model with composed kernels.
机译:在本文中,应用了多维输出高斯过程(GP)以模拟传感器网络收集的城市环境数据。来自不同位置的传感器的测量值相关。此外,我们观察到城市地区的污染水平与人类活动高度相结合,并相应地显示了周期性的模式。基于这些观察,我们讨论了具有两种方法的平均值和内核功能的设计:(1)基于超参数的内核和最大似然估计,(2)基于样本CoveriRe的近似值的Wiener-Khinchin定理。为了验证模型,比较不同方法给出的插值的准确性。实验结果表明,对于插值的应用,与近似样本的CoveriRce的依赖性GP可以提供比组成的内核的独立GP模型更好的性能。

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